失衡数据下基于扩散模型的参数共享故障数据生成方法

IF 2.7 3区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY Measurement Science and Technology Pub Date : 2024-07-02 DOI:10.1088/1361-6501/ad5de9
Zhengming Xiao, chengjunyi li, Tao Liu, Wenbin Liu, Shuai Mo, H. Houjoh
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引用次数: 0

摘要

旋转机械在长期重负荷工作条件下难免会出现故障。获取足够的数据来训练深度学习模型,可以让管理人员及时发现并处理相关故障,从而大大提高设备运行的安全性。机械故障样本往往比健康样本小得多。传统的数据增强方法大多是改变原始数据,但无法提高其特征的多样性,从而导致故障样本数量变多,但特征不变。针对上述问题,本文提出了一种基于参数共享和倒置瓶颈残差结构(DDPM)的扩散模型。首先,扩散过程逐渐用高斯噪声覆盖原始数据,以学习原始数据的相应故障特征。在扩散过程中,参数共享关注机制被嵌入到扩散过程的学习过程中。然后,利用倒瓶颈残差结构构建特征提取模块,以增强网络的学习能力。在获得原始数据的故障特征后,结果的反向过程通过与扩散过程相同的步骤,将高斯噪声还原为具有不同故障特征的数据。通过比较各种生成模型的结果和分析生成数据的特征,验证了所提方法在数据增强任务中的可行性和普遍性。
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Parameter Sharing Fault Data Generation Method Based on Diffusion Model Under Imbalance Data
Rotating machinery will inevitably fail under long-term heavy load working conditions. Obtaining enough data to train the deep learning model can enable managers to detect and deal with related failures in time, which greatly improves the safety of equipment operation. Mechanical fault samples are often much smaller than healthy samples. Traditional data enhancement methods mostly change the original data, but cannot improve the diversity of its features, so that the number of fault samples becomes larger, but the features remain unchanged. Aiming at the above problems, a diffusion model based on parameter sharing and inverted bottleneck residual structure (DDPM) is proposed. Firstly, the diffusion process gradually covers the original data with Gaussian noise, to learn the corresponding fault characteristics of the original data. In the diffusion process, the parameter sharing attention mechanism is embedded in the learning process of the diffusion process. Then, the feature extraction module is constructed by using the inverted bottleneck residual structure to enhance the learning ability of the network. After obtaining the fault characteristics of the original data, the reverse process of the results restores the Gaussian noise to data with different fault characteristics through the same steps as the diffusion process. By comparing the results of various generation models and analysing the characteristics of the generated data, the feasibility and universality of the proposed method in data augmentation tasks are verified.
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来源期刊
Measurement Science and Technology
Measurement Science and Technology 工程技术-工程:综合
CiteScore
4.30
自引率
16.70%
发文量
656
审稿时长
4.9 months
期刊介绍: Measurement Science and Technology publishes articles on new measurement techniques and associated instrumentation. Papers that describe experiments must represent an advance in measurement science or measurement technique rather than the application of established experimental technique. Bearing in mind the multidisciplinary nature of the journal, authors must provide an introduction to their work that makes clear the novelty, significance, broader relevance of their work in a measurement context and relevance to the readership of Measurement Science and Technology. All submitted articles should contain consideration of the uncertainty, precision and/or accuracy of the measurements presented. Subject coverage includes the theory, practice and application of measurement in physics, chemistry, engineering and the environmental and life sciences from inception to commercial exploitation. Publications in the journal should emphasize the novelty of reported methods, characterize them and demonstrate their performance using examples or applications.
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